Research Methods
Beyond p values: practical methods for analyzing uncertainty in research
External / Open Access
Abstract
This article explains, and discusses the merits of, three approaches for analyzing the certainty with which statistical results can be extrapolated beyond the data gathered. Sometimes it may be possible to use more than one of these approaches. (1) If there is an exact null hypothesis which is credible and interesting (usually not the case), researchers should cite a p value (significance level), although jargon is best avoided. (2) If the research result is a numerical value, researchers should cite a confidence interval. (3) If there are one or more hypotheses of interest, it may be possible to adapt the methods used for confidence intervals to derive an "estimated probability" for each. Under certain circumstances these could be interpreted as Bayesian posterior probabilities. These estimated probabilities can easily be worked out from the p values and confidence intervals produced by packages such as SPSS. Estimating probabilities for hypotheses means researchers can give a direct answer to the question "How certain can we be that this hypothesis is right?".
Full Title
Beyond p values: practical methods for analyzing uncertainty in research
Primary Author
Michael Wood
Publication Type
Preprint
Year
2016
Journal
arXiv Preprint
Category
Research Methods
Institution
External / Open Access
Access
Open Access
Added to Library
March 24, 2026
Cite This Publication
APA
Michael Wood (2016). *Beyond p values: practical methods for analyzing uncertainty in research*. External / Open Access.
MLA
Michael Wood. *Beyond p values: practical methods for analyzing uncertainty in research*. External / Open Access, 2016.